Recent contrastive based 3D action representation learning has made great progress. However, the strict positive/negative constraint is yet to be relaxed and the use of non-self positive is yet to be explored. In this paper, a Contrastive Positive Mining (CPM) framework is proposed for unsupervised skeleton 3D action representation learning. The CPM identifies non-self positives in a contextual queue to boost learning. Specifically, the siamese encoders are adopted and trained to match the similarity distributions of the augmented instances in reference to all instances in the contextual queue. By identifying the non-self positive instances in the queue, a positive-enhanced learning strategy is proposed to leverage the knowledge of mined positives to boost the robustness of the learned latent space against intra-class and inter-class diversity. Experimental results have shown that the proposed CPM is effective and outperforms the existing state-of-the-art unsupervised methods on the challenging NTU and PKU-MMD datasets.
翻译:最近,基于3D行动代表制的对比性学习取得了巨大进展,然而,严格的正/负限制尚未放松,使用非自我积极因素尚待探讨。本文件建议为不受监督的骨架3D行动代表制学习建立一个对比性积极采矿框架。CPM在背景排列中确定了非自我积极因素,以促进学习。具体地说,Siamese编码器被采纳和培训,以匹配背景排队中所有情况中增加的事例的相似性分布。通过确定排队中的非自我积极情况,提出了积极的强化学习战略,以利用布雷积极因素的知识,增强学到的潜在空间的稳健性,防止阶级内部和阶级间的多样性。实验结果表明,拟议的CMPM是有效的,并超越了在具有挑战性的NTU和PKU-MMD数据集方面现有的最先进、最不受监督的方法。